Data processing occurs when you collect and manipulate data to unlock value.
Without it, your data won’t offer actionable business insights and your organization might end up paying for data storage that it doesn’t need. Like paying rent for a house that no one lives in, you’ll needlessly waste money.
So, it’s clear that data processing is necessary for the modern business to use data effectively. But how can you deploy it in your organization?
Let‘s first define what data processing is, then explore the seven stages of the process.
Here’s a quick definition of data processing:
Data processing involves collecting and manipulating data to make it usable and more valuable. Starting with data in its raw form, data processing then alters it into a format that computers and other people can use to help them achieve a result.
Performing data processing is easier when you understand its framework.
The seven stages of data processing are:
By following the seven stages of data processing, you’ll manipulate data effectively and extract the value from it you need. The next question is: do you do it manually or with an automated solution?
Consider the analogy of travelling somewhere. If you’re going somewhere that’s close by, you’ll decide to walk. However, for a long distance, you’ll choose to use a vehicle.
It’s the same for data processing. At a small scale, you can use a manual solution. However, when dealing with a large amount of data, you need to use an automated solution.
Put simply: trying to ‘walk it’ when you have a large number of data tables across multiple systems will drive you mad and take too much time.
Automated solutions, like CloverDX, can make processing data at scale easier. This takes the weight off your IT team so they can focus on innovation, rather than spend their time manually loading and cleaning data.
If you’d like a conversation with our team regarding this, reach out today.